Business Data Analyst

NineTech
London
1 month ago
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This range is provided by NineTech. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


Overview

Ninetech Solutions is supporting a leading Financial Services client who is embarking on a strategic data integration project — and we’re looking for an experienced Business Analyst to join on an initial 6-month contract.


This role will play a key part in enabling seamless data flow and integration across systems within a cloud-based Azure environment, collaborating across technical and business teams to ensure accurate, timely, and impactful data delivery.


Base pay range

Details provided by NineTech. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


Responsibilities


  • Perform detailed data mapping and analysis to support robust integration of systems and datasets
  • Work closely with technical teams to ensure data is properly transformed, integrated, and validated
  • Support the use and integration of APIs in a cloud-first (Azure) environment
  • Gather and refine business requirements in an Agile delivery environment, working with product owners, developers, and QA teams
  • Ensure data quality, governance and consistency align with enterprise standards
  • Serve as the bridge between technical and non-technical stakeholders
  • Strong experience as a Business Analyst within data integration or data-driven projects, ideally in Financial Services
  • Solid understanding of data flows, data mapping, and system interactions
  • Hands-on experience with Azure cloud services and APIs
  • Proficient in Agile delivery, with tools such as JIRA, Confluence, or similar
  • Excellent stakeholder management and ability to translate technical concepts into business-friendly language
  • Strong analytical mindset with a keen eye for data quality and governance


How to apply

Please send your CV to or apply directly via LinkedIn.


Seniority level


  • Mid-Senior level


Employment type


  • Contract


Job function


  • Information Technology


Industries


  • IT Services and IT Consulting and Financial Services


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